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Automatic fovea location in retinal images using anatomical priors and vessel density

机译:使用解剖学先验和血管密度在视网膜图像中自动进行中央凹定位

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The aim of this paper is to devise an automatic algorithm locating the fovea center in retinal fundus images. We locate the fovea center as the region of minimum vessel density within a search region defined from anatomical priors, i.e., knowledge on the structure of the retina. Vessel density is computed from a binary vessel map, providing good invariance against image quality. Priors include the approximate distance from the optic disc, expressed in multiple of the disc diameter for generality. The disc is located automatically. We learn the distribution of disc-macula distances from clinical annotations on a sample of images independent of the test sample. We use the same sample of images to optimize the standard deviation of the Gaussian mask, which is used to weigh vessel density for cost estimation. We tested performance on a sample of 116 fundus images from the Tayside diabetic screening programme (TENOVUS) and 303 fundus images from MESSIDOR public data set. To test resilience to quality variations, TENOVUS images were divided into three quality groups and MESSIDOR images were divided into images with no risk of macula edema and with risk of macula edema. Algorithm result on TENOVUS images show good localization performance with all groups compared to manual ground truth annotations (92% estimates within 0.5 disc diameters of ground truth location with good quality, 70% with poor quality images). For MESSIDOR images, our algorithm recorded an accuracy of 80% for images with no risk of macula edema and 59% for images with risk of macula edema.
机译:本文的目的是设计一种自动算法来定位视网膜底图像中的中央凹中心。我们将中央凹中心定位为根据解剖学先验定义的搜索区域内最小血管密度的区域,即对视网膜结构的了解。血管密度是通过二进制血管图计算得出的,对图像质量具有良好的不变性。先验包括到视盘的近似距离,为通用起见,以盘直径的倍数表示。光盘自动定位。我们从独立于测试样本的图像样本上的临床注释中获悉椎间盘-黄斑距离的分布。我们使用相同的图像样本来优化高斯蒙版的标准偏差,该偏差用于权衡容器密度以进行成本估算。我们对来自Tayside糖尿病筛查程序(TENOVUS)的116眼底图像和来自MESSIDOR公共数据集的303眼底图像的样本进行了性能测试。为了测试对质量变化的适应性,将TENOVUS图像分为三个质量组,将MESSIDOR图像分为无黄斑水肿风险和黄斑水肿风险的图像。与手动地面真相注释相比,TENOVUS图像上的算法结果在所有组中均显示出良好的定位性能(在地面真相位置的0.5圆盘直径内,有92%的估计具有良好的质量,有70%的图像质量较差)。对于MESSIDOR图像,我们的算法记录的准确性为无黄斑水肿风险的图像为80%,有黄斑水肿风险的图像为59%。

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